2019年第二届在线推荐系统和用户建模研讨会

João Vinagre, A. Jorge, A. Bifet, Marie Al-Ghossein
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引用次数: 6

摘要

在线系统中不断增长的用户生成数据的性质对我们如何处理这些数据提出了明显的挑战。通常,这个问题被认为是一个可伸缩性问题,并且主要通过能够在短时间内训练大量数据的分布式算法来解决。然而,数据不可避免地以高速增长。最终,人们需要丢弃或存档其中的一些。此外,用户建模和推荐系统中数据的动态性,例如用户偏好的变化,以及新用户和新项目的不断引入,使得维护最新、准确的推荐模型变得越来越困难。本次研讨会的目的是将对基于流的用户建模、推荐和个性化的增量和自适应方法感兴趣的研究人员和实践者聚集在一起,包括算法、评估问题、增量内容和上下文挖掘、隐私和透明度、时间推荐或持续学习的软件框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ORSUM 2019 2nd workshop on online recommender systems and user modeling
The ever-growing nature of user generated data in online systems poses obvious challenges on how we process such data. Typically, this issue is regarded as a scalability problem and has been mainly addressed with distributed algorithms able to train on massive amounts of data in short time windows. However, data is inevitably adding up at high speeds. Eventually one needs to discard or archive some of it. Moreover, the dynamic nature of data in user modeling and recommender systems, such as change of user preferences, and the continuous introduction of new users and items make it increasingly difficult to maintain up-to-date, accurate recommendation models. The objective of this workshop is to bring together researchers and practitioners interested in incremental and adaptive approaches to stream-based user modeling, recommendation and personalization, including algorithms, evaluation issues, incremental content and context mining, privacy and transparency, temporal recommendation or software frameworks for continuous learning.
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